Machine learning (ML) models are nowadays used in complex applications in various domains, such as medicine, bioinformatics, and other sciences. Due to their black box nature, however, it may sometimes be hard to understand and trust the results they provide. This has increased the demand for reliable visualization tools related to enhancing trust in ML models, which has become a prominent topic of research in the visualization community over the past decades. To provide an overview and present the frontiers of current research on the topic, we present a State-of-the-Art Report (STAR) on enhancing trust in ML models with the use of interactive visualization. We define and describe the background of the topic, introduce a categorization for visualization techniques that aim to accomplish this goal, and discuss insights and opportunities for future research directions. Among our contributions is a categorization of trust against different facets of interactive ML, expanded and improved from previous research. Our results are investigated from different analytical perspectives: (a) providing a statistical overview, (b) summarizing key findings, (c) performing topic analyses, and (d) exploring the data sets used in the individual papers, all with the support of an interactive web-based survey browser. We intend this survey to be beneficial for visualization researchers whose interests involve making ML models more trustworthy, as well as researchers and practitioners from other disciplines in their search for effective visualization techniques suitable for solving their tasks with confidence and conveying meaning to their data.
翻译:机械学习模式目前用于医学、生物信息学和其他科学等各个领域的复杂应用中。但由于其黑盒性质,有时很难理解和相信它们提供的结果。这增加了对可靠的可视化工具的需求,以增进对ML模型的信任,而ML模型在过去几十年中已成为视觉化界研究的一个突出主题。为了提供对目前有关这一专题的研究的概览和前沿,我们提交了一份关于利用交互式可视化来增强对ML模型的信任的最新报告(STAR),我们界定和描述该主题的背景,对旨在实现这一目标的可视化技术进行分类,并讨论对未来研究方向的洞察力和机会。我们的贡献之一是将信任与互动ML的不同方面进行分类,在过去几十年中扩大和改进了这些模型。我们从不同的分析角度对结果进行了调查:(a) 提供统计概览,(b) 总结主要调查结果,(c) 进行专题分析,以及(d) 探索个人文件中使用的数据集,对旨在实现这一目标的可视化技术进行分类,并对视觉化技术进行分类,并讨论未来研究方向。我们打算通过互动的网络调查来进行更有益的搜索。